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Classification of EEG Signals Based on Pattern Recognition Approach

机译:基于模式识别方法的脑电信号分类

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摘要

Feature extraction is an important step in the process of electroencephalogram (EEG) signal classification. The authors propose a “pattern recognition” approach that discriminates EEG signals recorded during different cognitive conditions. Wavelet based feature extraction such as, multi-resolution decompositions into detailed and approximate coefficients as well as relative wavelet energy were computed. Extracted relative wavelet energy features were normalized to zero mean and unit variance and then optimized using Fisher's discriminant ratio (FDR) and principal component analysis (PCA). A high density EEG dataset validated the proposed method (128-channels) by identifying two classifications: (1) EEG signals recorded during complex cognitive tasks using Raven's Advance Progressive Metric (RAPM) test; (2) EEG signals recorded during a baseline task (eyes open). Classifiers such as, K-nearest neighbors (KNN), Support Vector Machine (SVM), Multi-layer Perceptron (MLP), and Naïve Bayes (NB) were then employed. Outcomes yielded 99.11% accuracy via SVM classifier for coefficient approximations (A5) of low frequencies ranging from 0 to 3.90 Hz. Accuracy rates for detailed coefficients were 98.57 and 98.39% for SVM and KNN, respectively; and for detailed coefficients (D5) deriving from the sub-band range (3.90–7.81 Hz). Accuracy rates for MLP and NB classifiers were comparable at 97.11–89.63% and 91.60–81.07% for A5 and D5 coefficients, respectively. In addition, the proposed approach was also applied on public dataset for classification of two cognitive tasks and achieved comparable classification results, i.e., 93.33% accuracy with KNN. The proposed scheme yielded significantly higher classification performances using machine learning classifiers compared to extant quantitative feature extraction. These results suggest the proposed feature extraction method reliably classifies EEG signals recorded during cognitive tasks with a higher degree of accuracy.
机译:特征提取是脑电图(EEG)信号分类过程中的重要步骤。作者提出了一种“模式识别”方法,该方法可以区分在不同认知条件下记录的脑电信号。计算了基于小波的特征提取,例如将多分辨率分解成详细和近似的系数以及相对小波能量。将提取的相对小波能量特征归一化为零均值和单位方差,然后使用Fisher判别比(FDR)和主成分分析(PCA)进行优化。高密度脑电数据集通过识别两个分类验证了所提出的方法(128通道):(1)使用Raven的先进进步度量(RAPM)测试在复杂的认知任务中记录的脑电信号; (2)在基线任务(睁大眼睛)期间记录的EEG信号。然后使用分类器,例如K最近邻(KNN),支持向量机(SVM),多层感知器(MLP)和朴素贝叶斯(NB)。通过SVM分类器,结果在0到3.90 Hz的低频系数近似值(A5)下产生了99.11%的精度。 SVM和KNN的详细系数的准确率分别为98.57%和98.39%;对于从子带范围(3.90–7.81 Hz)得出的详细系数(D5)。对于A5和D5系数,MLP和NB分类器的准确率分别为97.11–89.63%和91.60–81.07%。此外,该方法还应用于公共数据集对两个认知任务的分类,并获得了可比的分类结果,即KNN的准确性为93.33%。与现存的定量特征提取相比,使用机器学习分类器提出的方案产生了更高的分类性能。这些结果表明,所提出的特征提取方法能够以较高的准确度可靠地对认知任务期间记录的脑电信号进行分类。

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